多参考因子分析:未知平移下的低秩协方差估计

IF 1.4 4区 数学 Q2 MATHEMATICS, APPLIED Information and Inference-A Journal of the Ima Pub Date : 2021-02-01 DOI:10.1093/imaiai/iaaa019
Boris Landa;Yoel Shkolnisky
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引用次数: 3

摘要

我们考虑通过未知平移(通过循环移位建模)观察到的随机信号的协方差矩阵的估计问题,该随机信号被噪声破坏。解决这个问题可以发现被翻译(作为干扰参数)的存在所掩盖的低阶结构,并直接应用于主成分分析。我们假设基础信号的长度为$L$,并遵循具有平均零和$r$正态分布因子的标准因子模型。为了在这种情况下恢复协方差矩阵,我们建议使用信号的二阶和四阶移位不变矩,即功率谱和三谱。我们证明了当$r<;\sqrt{L}$。相应地,我们提供了一个多项式时间过程,用于从许多(平移和噪声)观测估计协方差矩阵,其中不需要$r$的明确知识,并证明了该过程的统计一致性。虽然我们的结果证明了低秩协方差矩阵的功率谱和三谱的协方差估计是可能的,但我们证明了全秩协方差矩阵并非如此。我们进行了数值实验,证实了我们的理论发现,并证明了我们的算法在各种环境中的良好性能,包括在高噪声水平下。
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Multi-reference factor analysis: low-rank covariance estimation under unknown translations
We consider the problem of estimating the covariance matrix of a random signal observed through unknown translations (modeled by cyclic shifts) and corrupted by noise. Solving this problem allows to discover low-rank structures masked by the existence of translations (which act as nuisance parameters), with direct application to principal components analysis. We assume that the underlying signal is of length $L$ and follows a standard factor model with mean zero and $r$ normally distributed factors. To recover the covariance matrix in this case, we propose to employ the second- and fourth-order shift-invariant moments of the signal known as the power spectrum and the trispectrum. We prove that they are sufficient for recovering the covariance matrix (under a certain technical condition) when $r<\sqrt{L}$ . Correspondingly, we provide a polynomial-time procedure for estimating the covariance matrix from many (translated and noisy) observations, where no explicit knowledge of $r$ is required, and prove the procedure's statistical consistency. While our results establish that covariance estimation is possible from the power spectrum and the trispectrum for low-rank covariance matrices, we prove that this is not the case for full-rank covariance matrices. We conduct numerical experiments that corroborate our theoretical findings and demonstrate the favourable performance of our algorithms in various settings, including in high levels of noise.
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来源期刊
CiteScore
3.90
自引率
0.00%
发文量
28
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